Publications
- Kirlin, P.B., & Utgoff, P.E. (2008). A Framework for Automated Schenkerian Analysis.
In Proceedings of the Ninth International Conference on Music Information Retrieval (pp. 363--368).
Philadelphia. (.pdf)
- Utgoff, P.E., & Kirlin, P.B. (2006). Detecting Motives and Recurring Patterns in Polyphonic Music.
In Proceedings of the International Computer Music Conference (pp. 487-494). New Orleans.
(.ps)
(.pdf)
- Kirlin, P.B., & Utgoff, P.E. (2005). VoiSe: Learning to segregate
voices in explicit and implicit polyphony. In Reiss, J. D., & Wiggins, G. A. (Eds.),
Proceedings of the Sixth International Conference on Music Information Retrieval (pp. 552-557).
London: Queen Mary, University of London.
(letter .ps.gz)
(letter .pdf)
(a4 .ps.gz)
(a4 .pdf)
- Stracuzzi, D.J. (2005). Scalable knowledge acquisition through
memory organization. International and Interdisciplinary Conference
on Knowledge Representation and Reasoning (AKRR 05). 57-64. Helsinki,
Finland: Helsinki University of Technology.
(.ps)
(.pdf)
Best Student Paper
- Blaschko, M.B., Holness, G., Mattar, M.A., Lisin, D., Utgoff,
P.E., Hanson, A.R., Schultz, H.J., & Riseman, E.M. (2005).
Automatic in situ identification of plankton.
Workshop on Applications of Computer Vision (pp. 79-86).
- Stracuzzi, D.J., & Utgoff, P.E. (2004). Randomized variable
elimination. Journal of Machine Learning Research, 5,
1331-1362.
(.ps)
(.pdf)
- Stoddard, J., Raphael, C., & Utgoff, P.E. (2004).
Well-tempered spelling: A key-invariant pitch spelling algorithm.
International Symposium on Music Information Retrieval.
- Precup, D., & Utgoff, P.E. (2004). Classification using
Phi-machines and constructive function approximation. Machine
Learning, 55, 31-52.
- Utgoff, P.E., & Stracuzzi, D.J. (2002). Many-layered
learning. Neural Computation, 14, 2497-2529. (.ps), (.pdf)
- Stracuzzi, D.J., & Utgoff, P.E. (2002). Randomized variable
elimination. Proceedings of the Nineteenth International
Conference on Machine Learning (pp. 594-601). Sydney,
Australia: Morgan Kaufmann.
(.ps)
(.pdf)
- Utgoff, P.E., & Stracuzzi, D.J. (2002). Many-layered
learning. Proceedings of the Second International Conference
on Development and Learning (pp. 141-146).
(.ps)
(.pdf)
- Utgoff, P.E., & Cochran, R.P. (2001). A least-certainty
heuristic for selective search. Proceedings of the Second
International Conference on Computers and Games (pp. 1-18).
Springer Verlag. (.ps), (.pdf)
- Utgoff, P.E. (2001). Feature construction for game playing
(pp. 131-152). In Fuerenkranz & Kubat (Eds.), Machines
that learn to play games. Nova Science Publishers. (.ps), (.pdf)
- Piater, J.H., Riseman, E.M., & Utgoff, P.E. (1999).
Interactively training pixel classifiers. International
Journal of Pattern Recognition and Artificial Intelligence,
13, 171-193.
- Utgoff, P.E., & Stracuzzi, D.J. (1999). Approximation via
value unification. Proceedings of the Sixteenth International
Conference on Machine Learning (pp. 425-432). Ljubljana:
Morgan Kaufmann. (.ps),
(.pdf)
- Utgoff, P.E. (1998). Decision trees (pp. 222-224). In Wilson
& Keil (Eds.), The MIT encyclopedia of cognitive
sciences. Bradford. (.ps), (.pdf)
- Utgoff, P.E., & Cohen, P.R. (1998). Applicability of
reinforcement learning. Proceedings of the 1998 ICML Workshop
on the Methodology of Applying Machine Learning (pp. 37-43).
AAAI Press Report WS-98-16.
- Utgoff, P.E., & Precup, D. (1998). Constructive function
approximation (pp. 219-235). In Liu & Motoda (Eds.),
Feature extraction, construction, and selection: A data-mining
perspective. Kluwer. (.ps), (.pdf)
- Moss, J.E.B., Utgoff, P.E., Cavazos, J., Precup, D., Stefanovic,
D., Brodley, C., & Scheeff, D. (1998). Learning to schedule
straight-line code. Advances in Neural Information Processing
Systems (pp. 929-935). San Mateo, CA: Morgan Kaufmann.
- Piater, J., Riseman, E., & Utgoff, P.E. (1998). Interactively
training pixel classifiers. Eleventh International FLAIRS
Conference (FLAIRS-98) (pp. 57-61).
- Precup, D., & Utgoff, P.E. (1998). Classification using
phi-machines and constructive function approximation.
Proceedings of the Fifteenth International Conference on
Machine Learning (pp. 439-444).
- Schmill, M.D., Rosenstein, M.T., Cohen, P.R., & Utgoff,
P.E. (1998). Learning what is relevant to the effects of
actions for a mobile robot.
Proceedings of the Second International Conference on
Autonomous Agents (pp. 247-253).
- Utgoff, P.E., Berkman, N.C., & Clouse, J.A. (1997). Decision
tree induction based on efficient tree restructuring. Machine
Learning, 29, 5-44. (.ps), (.pdf)
- Clouse, J.A. (1996). The role of training in reinforcement
learning. In Donahoe (Ed.), Neural Network Models of
Cognition: Biobehavioral Foundations. Amsterdam: Elsevier
Science Publishers.
- Brodley, C.E., & Utgoff, P.E. (1995). Multivariate decision
trees. Machine Learning, 19, 45-77.
- Brodley, C.E. (1995). Recursive automatic bias selection for
classifier construction. Machine Learning, 20, 63-94.
- Clouse, J.A. (1995). Learning from an automated training agent.
Proceedings: ML95 Workshop on `Agents that Learn from Other
Agents'. (\verb@http://www.cs.wisc.edu/shavlik/ml95w1/@.)
- Brodley, C.E., & Utgoff, P.E. (1994). Dynamic recursive model
class selection for classifier construction. In Cheeseman &
Oldford (Eds.), Selecting Models from Data: Artificial
Intelligence and Statistics IV. New York: Springer-Verlag.
- Draper, B.A., Brodley, C.E., & Utgoff, P.E. (1994).
Goal-directed classification using linear machine decision trees.
IEEE Transactions on Pattern Analysis and Machine Intelligence,
16, 888-893. (Special Issue on Vision and Machine Learning)
- Utgoff, P.E. (1994). An improved algorithm for incremental
induction of decision trees. Machine Learning: Proceedings of
the Eleventh International Conference (pp. 318-325). New
Brunswick, NJ: Morgan Kaufmann.
- Brodley, C.E., & Utgoff, P.E. (1993). Dynamic recursive model
class selection for classifier construction. Preliminary
Papers of the Fourth International Workshop on Artificial
Intelligence and Statistics (pp. 179-184).
- Brodley, C.E. (1993). Addressing the selective superiority
problem: Automatic algorithm/model class selection. Machine
Learning: Proceedings of the Tenth International Conference
(pp. 17-24). Amherst, MA: Morgan Kaufmann.
- Fawcett, T.E., & Utgoff, P.E. (1992). Automatic feature
generation for problem solving systems. Machine Learning:
Proceedings of the Ninth International Conference
(pp. 144-153). San Mateo, CA: Morgan Kaufmann.
- Clouse, J.A., & Utgoff, P.E. (1992). A teaching method for
reinforcement learning. Machine Learning: Proceedings of the
Ninth International Conference (pp. 92-101). San Mateo, CA:
Morgan Kaufmann.
- Callan, J.P., & Utgoff, P.E. (1991). Constructive induction
on domain knowledge. Proceedings of the Ninth National
Conference on Artificial Intelligence (pp. 614-619). Anaheim,
CA: MIT Press.
- Callan, J.P., & Utgoff, P.E. (1991). A transformational
approach to constructive induction. Machine Learning:
Proceedings of the Eighth International Workshop
(pp. 122-126). Evanston, IL: Morgan Kaufmann.
- Callan, J.P., Fawcett, T.E., & Rissland, E.L. (1991). CABOT:
An adaptive approach to case-based search. Proceedings of the
Twelfth International Joint Conference on Artificial
Intelligence (pp. 803-808). Sidney, Australia: Morgan
Kaufmann.
- Callan, J.P., Fawcett, T.E., & Rissland, E.L. (1991).
Adaptive case-based reasoning. Proceedings of the DARPA
Workshop on Case-Based Reasoning (pp. 179-190). Washington,
D.C.: Morgan Kaufmann.
- Fawcett, T.E., & Utgoff, P.E. (1991). A hybrid method for
feature generation. Machine Learning: Proceedings of the
Eighth International Workshop (pp. 137-141). Evanston, IL:
Morgan Kaufmann.
- Saxena, S. (1991). On the effect of instance representation on
generalization. Machine Learning: Proceedings of the Eighth
International Workshop. Evanston, IL: Morgan Kaufmann.
- Utgoff, P.E., & Clouse, J.A. (1991). Two kinds of training
information for evaluation function learning. Proceedings of
the Ninth National Conference on Artificial Intelligence
(pp. 596-600). Anaheim, CA: MIT Press. (.ps), (.pdf)
- Saxena, S. (1990). Using description length to evaluate input
representations for learning. Proceedings of the AAAI Spring
Symposium on the Theory and Application of Minimal Length
Encoding (pp. 135-139).
- Utgoff, P.E., & Brodley, C.E. (1990). An incremental method
for finding multivariate splits for decision trees.
Proceedings of the Seventh International Conference on Machine
Learning (pp. 58-65). Austin, TX: Morgan Kaufmann. (.ps), (.pdf)
- Yee, R.C., Saxena, S., Utgoff, P.E., & Barto, A.G. (1990).
Explaining temporal-differences to create useful concepts for
evaluating states. Proceedings of the Eighth National
Conference on Artificial Intelligence. Boston, MA: Morgan
Kaufmann.
- Callan, J.P. (1989). Knowledge-based feature generation.
Proceedings of the Sixth International Workshop on Machine
Learning (pp. 441-443). Ithaca, NY: Morgan Kaufmann.
- Fawcett, T. (1989). Learning from plausible explanations.
Proceedings of the Sixth International Workshop on Machine
Learning (pp. 37-39). Ithaca, NY: Morgan Kaufmann.
- Saxena, S. (1989). Evaluating alternative instance
representations. Proceedings of the Sixth International
Workshop on Machine Learning (pp. 465-468). Ithaca, NY:
Morgan Kaufmann.
- Utgoff, P.E. (1989). Improved training via incremental learning.
Proceedings of the Sixth International Workshop on Machine
Learning. Ithaca, NY: Morgan Kaufmann.
- Utgoff, P.E. (1989). Incremental induction of decision trees.
Machine Learning, 4, 161-186. (.ps), (.pdf)
- Utgoff, P.E. (1989). Perceptron trees: A case study in hybrid
concept representations. Connection Science, 1, 377-391.
- Utgoff, P.E. (1988). ID5: An incremental ID3. Proceedings of
the Fifth International Conference on Machine Learning
(pp. 107-120). Ann Arbor, MI: Morgan Kaufman.
- Utgoff, P.E. (1988). Perceptron trees: A case study in hybrid
concept representations. Proceedings of the Seventh National
Conference on Artificial Intelligence (pp. 601-606). Saint
Paul, MN: Morgan Kaufmann.
- Utgoff, P.E., & Heitman, P.S. (1988). Learning and
generalizing move selection preferences. Proceedings of the
AAAI Symposium on Computer Game Playing (pp. 36-40). Palo
Alto, CA.
- Utgoff, P.E., & Saxena, S. (1988). Obtaining efficient
classifiers from explanations. Proceedings of the AAAI
Symposium on Explanation Based Learning (pp. 47-51). Palo
Alto, CA.
- Connell, Margaret E., & Utgoff, Paul E. (1987). Learning to
control a dynamical system. Proceedings of the Sixth National
Conference on Artificial Intelligence (pp. 456-460). Seattle,
WA: Morgan Kaufmann.
- Connell, Margaret, E., & Utgoff, Paul E. (1987). Learning to
control a dynamical physical system. Computational
Intelligence, 3, 330-337.
- Utgoff, P.E., & Saxena, S. (1987). Learning a preference
predicate. Proceedings of the Fourth International Workshop on
Machine Learning (pp. 115-121). Irvine, CA: Morgan Kaufmann.
- Utgoff, P.E. (1986). Machine learning of inductive bias.
Hingham, MA: Kluwer. (reviewed in IEEE Expert, Fall 1986)
Unpublished Reports
- Utgoff, P.E., Raphael, C., & Stoddard, J. (2004).
Detecting motives and recurring patterns in polyphonic
music, (Technical Report 04-31), Amherst, MA: University of
Massachusetts, Computer Science Department.
- Utgoff, P.E., Ding, G., & Riseman, E.R. (2003). Feature
sets for texture classification, (03-38), Amherst, MA:
University of Massachusetts, Computer Science Department.
- Utgoff, P.E., Jensen, D., & Lesser, V. (2000). Inferring
task structure from data, (Technical Report TR-00-54),
Amherst, MA: University of Massachusetts, Computer Science.
- Stracuzzi, D.J., & Utgoff, P.E. (2000). Feature
compilation, (TR-00-18), Amherst, MA: University of
Massachusetts, Computer Science Department.
- Utgoff, P.E., & Qian, J. (1999). A new polynomial function
approximation algorithm, (Technical Report TR-99-20), Amherst,
MA: University of Massachusetts, Computer Science.
- Utgoff, P.E., & Precup, D. (1997). Relative value
function approximation, (Technical Report 97-03), Amherst, MA:
University of Massachusetts, Department of Computer Science.
- Utgoff, P.E., & Precup, D. (1997). Constructive function
approximation, (Technical Report 97-04), Amherst, MA:
University of Massachusetts, Department of Computer Science.
- Clouse, J.A. (1997). On
integrating apprentice learning and reinforcement
learning, Doctoral Dissertation (Technical Report 97-26),
Amherst, MA: University of Massachusetts, Department of Computer
Science.
- Utgoff, P.E., & Clouse, J.A. (1996). A
Kolmogorov-Smirnoff metric for decision tree induction,
(Technical Report 96-3), Amherst, MA: University of Massachusetts,
Department of Computer Science.
- Utgoff, P.E. (1996). ELF: An evaluation function learner that
constructs its own features, (Technical Report 96-65),
Amherst, MA: University of Massachusetts, Department of Computer
Science.
- Clouse, J.A. (1996). An introspection approach to querying a
trainer, (Technical Report 96-13), Amherst, MA: University of
Massachusetts, Department of Computer Science.
- Utgoff, P.E. (1995). Internet program competition,
(Technical Report 95-67), Amherst, MA: University of
Massachusetts, Department of Computer Science.
- Clouse, J.A. (1995). On training automated agents,
(Technical Report 95-109), Amherst, MA: University of
Massachusetts, Computer Science Department.
- Clouse, J.A. (1995). Action set approach to reinforcement
learning, (Technical Report 95-108), Amherst, MA: University
of Massachusetts, Computer Science Department.
- Berkman, N.C. (1995). Value grouping for binary decision
trees, (Technical Report 95-19), Amherst, MA: University of
Massachusetts, Department of Computer Science.
- Berkman, N.C., & Sandholm, T.W. (1995). What should be
minimized in a decision tree: A re-examination, (Technical
Report 95-20), Amherst, MA: University of Massachusetts,
Department of Computer Science.
- Callan, J.P. (1993). Knowledge-based feature generation for
inductive learning. Doctoral dissertation, Department of
Computer Science, University of Massachusetts, Amherst, MA.
- Fawcett, Tom E. (1993). Feature discovery for problem solving
systems. Doctoral dissertation, Department of Computer
Science, University of Massachusetts, Amherst, MA.
- Clouse, J.A. (1992). Learning application coefficients with a
Sigma-Pi unit. Master's thesis, Computer Science Department,
University of Massachusetts, Amherst, MA.
- Saxena, S. (1991). Predicting the effect of instance
representations on inductive learning. Doctoral dissertation,
Department of Computer Science, University of Massachusetts,
Amherst, MA.
- Utgoff, P.E., & Brodley, C.E. (1991). Linear machine
decision trees, (COINS Technical Report 91-10), Amherst, MA:
University of Massachusetts, Department of Computer and
Information Science. (.ps), (.pdf)
- Saxena, S., & Utgoff, P.E. (1990). A new set cover
heuristic, (TR-90-5), Amherst, MA: University of
Massachusetts, Computer and Information Science Department.
- Saxena, S., & Utgoff, P.E. (1988). A relationship between
classification accuracy and search quality, (Coins Technical
Report 88-104), Amherst, MA: University of Massachusetts,
Department of Computer and Information Science.
- Utgoff, P.E., & Saxena, S. (1987). A perfect lookup table
evaluation function for the eight-puzzle, (COINS Technical
Report 87-71), Amherst, MA: University of Massachusetts,
Department of Computer and Information Science.
Last Updated: February 6, 2007
© Copyright 2007, All Rights Reserved, Paul Utgoff, University of
Massachusetts